Anytime Induction of Cost-sensitive Trees
Esmeir, Saher, Markovitch, Shaul
–Neural Information Processing Systems
Machine learning techniques are increasingly being used to produce a wide-range of classifiers for complex real-world applications that involve nonuniform testing costs and misclassification costs. As the complexity of these applications grows, the management of resources during the learning and classification processes becomes a challenging task. In this work we introduce ACT (Anytime Cost-sensitive Trees), a novel framework for operating in such environments. ACT is an anytime algorithm that allows trading computation time for lower classification costs. It builds a tree top-down and exploits additional time resources to obtain better estimations for the utility of the different candidate splits.
Neural Information Processing Systems
Dec-31-2008
- Genre:
- Research Report (1.00)